Appraisal of data-driven techniques for predicting short-term streamflow in tropical catchment

Author:

Yeoh Kai Lun1ORCID,Puay How Tion2ORCID,Abdullah Rozi1ORCID,Abd Manan Teh Sabariah1ORCID

Affiliation:

1. a School of Civil Engineering, Universiti Sains Malaysia, Nibong Tebal, Penang 14300, Malaysia

2. b River Engineering and Urban Drainage Research Centre, Universiti Sains Malaysia, Nibong Tebal, Penang 14300, Malaysia

Abstract

Abstract Short-term streamflow prediction is essential for managing flood early warning and water resources systems. Although numerical models are widely used for this purpose, they require various types of data and experience to operate the model and often tedious calibration processes. Under the digital revolution, the application of data-driven approaches to predict streamflow has increased in recent decades. In this work, multiple linear regression (MLR) and random forest (RF) models with three different input combinations are developed and assessed for multi-step ahead short-term streamflow predictions, using 14 years of hydrological datasets from the Kulim River catchment, Malaysia. Introducing more precedent streamflow events as predictor improves the performance of these data-driven models, especially in predicting peak streamflow during the high-flow event. The RF model (Nash–Sutcliffe efficiency (NSE): 0.599–0.962) outperforms the MLR model (NSE: 0.584–0.963) in terms of overall prediction accuracy. However, with the increasing lead-time length, the models' overall prediction accuracy on the arrival time and magnitude of peak streamflow decrease. These findings demonstrate the potential of decision tree-based models, such as RF, for short-term streamflow prediction and offer insights into enhancing the accuracy of these data-driven models.

Publisher

IWA Publishing

Subject

Water Science and Technology,Environmental Engineering

Reference40 articles.

1. Review of studies on hydrological modelling in Malaysia;Modeling Earth Systems and Environment,2018

2. Daily streamflow prediction using optimally pruned extreme learning machine;Journal of Hydrology,2019

3. River flow model using artificial neural networks,2015

4. Streamflow prediction of Karuvannur River Basin using ANFIS, ANN and MNLR models;Procedia Technology,2016

5. Arias P. , BellouinN., CoppolaE., JonesR., KrinnerG., MarotzkeJ., NaikV., PalmerM., PlattnerG.-K. & RogeljJ.2021Climate Change 2021: The Physical Science Basis. Contribution of Working Group14 I to the Sixth Assessment Report of the Intergovernmental Panel on Climate Change; Technical Summary. Available from: https://www.ipcc.ch/report/ar6/wg1/. Accessed date: 6 October 2022.

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